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Hybrid incremental modeling based on least squares and fuzzy K-NN for monitoring tool wear in turning processes

机译:基于最小二乘和模糊K-NN的混合增量建模,用于监控车削过程中的刀具磨损

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摘要

There is now an emerging need for an efficient modeling strategy to develop a new generation of monitoring systems. One method of approaching the modeling of complex processes is to obtain a global model. It should be able to capture the basic or general behavior of the system, by means of a linear or quadratic regression, and then superimpose a local model on it that can capture the localized nonlinearities of the system. In this paper, a novel method based on a hybrid incremental modeling approach is designed and applied for tool wear detection in turning processes. It involves a two-step iterative process that combines a global model with a local model to take advantage of their underlying, complementary capacities. Thus, the first step constructs a global model using a least squares regression. A local model using the fuzzy k-nearest-neighbors smoothing algorithm is obtained in the second step. A comparative study then demonstrates that the hybrid incremental model provides better error-based performance indices for detecting tool wear than a transductive neurofuzzy model and an inductive neurofuzzy model.
机译:现在,迫切需要一种有效的建模策略来开发新一代的监视系统。进行复杂过程建模的一种方法是获取全局模型。它应该能够通过线性或二次回归来捕获系统的基本或一般行为,然后在其上叠加一个可以捕获系统局部非线性的局部模型。本文设计了一种基于混合增量建模方法的新方法,并将其应用于车削过程中的刀具磨损检测。它涉及两步迭代过程,该过程将全局模型与局部模型结合起来,以利用其基础的互补能力。因此,第一步使用最小二乘回归构建全局模型。在第二步中,获得了使用模糊k最近邻平滑算法的局部模型。然后,一项比较研究表明,与增量式神经模糊模型和感应式神经模糊模型相比,混合增量模型为检测工具磨损提供了更好的基于误差的性能指标。

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